用于处理用户估计作业执行时间中的不确定性的资源管理技术

Phuong Hoang, S. Majumdar, Marzia Zaman, Pradeep Srivastava, N. Goel
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引用次数: 4

摘要

云的普及正在迅速增长。云计算的研究已经开始考虑服务水平协议(SLA),其特征是最早的开始时间、运行时间和完成期限,并将作业执行请求提交给云。用户提供的请求运行时估计常常容易出错。对请求运行时的高估和低估都会对系统性能造成损害。满足sla通常需要资源的提前预订(AR)。本研究提出了一种软提前预约(SAR)方法,用于处理与用户提供的请求运行时估计相关的错误。这种方法放宽了与各自sla相关联的所有Advance Reservation (AR)请求必须满足截止日期的严格要求。讨论了基于SAR方法的两种算法,通过调整用户提供的估计来提高系统性能。基于仿真的性能评估证明了这些算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Resource management techniques for handling uncertainties in user estimated job execution times
The popularity of clouds is growing rapidly. Research on cloud computing has stared considering Service Level Agreement (SLA) characterized by an earliest start time, runtime and a deadline for completion with a request for job execution submitted to the cloud. Estimates of request runtimes provided by users are often error prone. Both overestimation and underestimation of request runtimes are detrimental for system performance. Satisfying SLAS often require Advance Reservation (AR) of resources. This research presents a Soft Advance Reservation (SAR) approach for handling errors associated with estimates of request runtime provided by users. This approach relaxes the strict requirement that all Advance Reservation (AR) requests associated with their respective SLAs must meet their deadlines. Two algorithms based on the SAR approach that adjust the user provided estimates for improving system performance are discussed. A simulation-based performance evaluation is used to demonstrate the effectiveness of these algorithms.
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